Outliers are the atypical observations that lie at abnormal distances from the other observations in a random sample. Such outliers are often seen as contaminating the data. In general, the rejection of influential outliers improves the accuracy of the estimators and so the results with the identification of outliers have become the most important aspect in any data analysis. Outlier detection finds many applications in the areas such as data cleaning, fraud detection, network intrusion, pharmaceutical research and exploration in science data buses. The distance based outlier detection is the most commonly used method. In this paper, the influence function for affinity is explained and the detection of outliers in classification problems us...
The detection of outliers has gained considerable interest in data mining with the realization that ...
This paper studies the difficulties of outlier detection on inexact data. We study the normal instan...
Our thesis is that we can efficiently identify meaningful outliers in large, multidimensional datas...
Outliers are the atypical observations that lie at abnormal distances from the other observations i...
Outliers, from a subjective point of view, are observations which are discordant from the other rema...
Outliers, also called anomalies are data patterns that do not conform to the behavior that is expect...
Outlier detection is a significant research area in data mining. An Outlier is a point or a set of p...
Outlier is a data point that deviates too much from the rest of dataset. Most of real-world dataset ...
Distance-based outlier detection is an important data mining technique that finds abnormal data obje...
General outlier detection strategies, be a distribution-based, clustering-based, or distance-based m...
Outlier detection is concerned with discovering exceptional behaviors of objects. Its theoretical pr...
For time series data, certain types of outliers are intrinsically more harmful for parameter estimat...
While the field of data mining has been studied extensively, most of the work has concentrated on di...
This paper deals with finding outliers (exceptions) in large datasets. The identification of outlier...
Outlier identification is important in many applications of multivariate analysis. Either because th...
The detection of outliers has gained considerable interest in data mining with the realization that ...
This paper studies the difficulties of outlier detection on inexact data. We study the normal instan...
Our thesis is that we can efficiently identify meaningful outliers in large, multidimensional datas...
Outliers are the atypical observations that lie at abnormal distances from the other observations i...
Outliers, from a subjective point of view, are observations which are discordant from the other rema...
Outliers, also called anomalies are data patterns that do not conform to the behavior that is expect...
Outlier detection is a significant research area in data mining. An Outlier is a point or a set of p...
Outlier is a data point that deviates too much from the rest of dataset. Most of real-world dataset ...
Distance-based outlier detection is an important data mining technique that finds abnormal data obje...
General outlier detection strategies, be a distribution-based, clustering-based, or distance-based m...
Outlier detection is concerned with discovering exceptional behaviors of objects. Its theoretical pr...
For time series data, certain types of outliers are intrinsically more harmful for parameter estimat...
While the field of data mining has been studied extensively, most of the work has concentrated on di...
This paper deals with finding outliers (exceptions) in large datasets. The identification of outlier...
Outlier identification is important in many applications of multivariate analysis. Either because th...
The detection of outliers has gained considerable interest in data mining with the realization that ...
This paper studies the difficulties of outlier detection on inexact data. We study the normal instan...
Our thesis is that we can efficiently identify meaningful outliers in large, multidimensional datas...